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<h1 id="sec_name">
<span data-if="hdevelop" style="display:inline;">get_contour_attrib_xld</span><span data-if="c" style="display:none;">T_get_contour_attrib_xld</span><span data-if="cpp" style="display:none;">GetContourAttribXld</span><span data-if="dotnet" style="display:none;">GetContourAttribXld</span><span data-if="python" style="display:none;">get_contour_attrib_xld</span> (算子名称)</h1>
<h2>名称</h2>
<p><code><span data-if="hdevelop" style="display:inline;">get_contour_attrib_xld</span><span data-if="c" style="display:none;">T_get_contour_attrib_xld</span><span data-if="cpp" style="display:none;">GetContourAttribXld</span><span data-if="dotnet" style="display:none;">GetContourAttribXld</span><span data-if="python" style="display:none;">get_contour_attrib_xld</span></code> — Return point attribute values of an XLD contour.</p>
<h2 id="sec_synopsis">参数签名</h2>
<div data-if="hdevelop" style="display:inline;">
<p>
<code><b>get_contour_attrib_xld</b>(<a href="#Contour"><i>Contour</i></a> :  : <a href="#Name"><i>Name</i></a> : <a href="#Attrib"><i>Attrib</i></a>)</code></p>
</div>
<div data-if="c" style="display:none;">
<p>
<code>Herror <b>T_get_contour_attrib_xld</b>(const Hobject <a href="#Contour"><i>Contour</i></a>, const Htuple <a href="#Name"><i>Name</i></a>, Htuple* <a href="#Attrib"><i>Attrib</i></a>)</code></p>
</div>
<div data-if="cpp" style="display:none;">
<p>
<code>void <b>GetContourAttribXld</b>(const HObject&amp; <a href="#Contour"><i>Contour</i></a>, const HTuple&amp; <a href="#Name"><i>Name</i></a>, HTuple* <a href="#Attrib"><i>Attrib</i></a>)</code></p>
<p>
<code><a href="HTuple.html">HTuple</a> <a href="HXLDCont.html">HXLDCont</a>::<b>GetContourAttribXld</b>(const HString&amp; <a href="#Name"><i>Name</i></a>) const</code></p>
<p>
<code><a href="HTuple.html">HTuple</a> <a href="HXLDCont.html">HXLDCont</a>::<b>GetContourAttribXld</b>(const char* <a href="#Name"><i>Name</i></a>) const</code></p>
<p>
<code><a href="HTuple.html">HTuple</a> <a href="HXLDCont.html">HXLDCont</a>::<b>GetContourAttribXld</b>(const wchar_t* <a href="#Name"><i>Name</i></a>) const  <span class="signnote">
            (
            Windows only)
          </span></code></p>
</div>
<div data-if="com" style="display:none;"></div>
<div data-if="dotnet" style="display:none;">
<p>
<code>static void <a href="HOperatorSet.html">HOperatorSet</a>.<b>GetContourAttribXld</b>(<a href="HObject.html">HObject</a> <a href="#Contour"><i>contour</i></a>, <a href="HTuple.html">HTuple</a> <a href="#Name"><i>name</i></a>, out <a href="HTuple.html">HTuple</a> <a href="#Attrib"><i>attrib</i></a>)</code></p>
<p>
<code><a href="HTuple.html">HTuple</a> <a href="HXLDCont.html">HXLDCont</a>.<b>GetContourAttribXld</b>(string <a href="#Name"><i>name</i></a>)</code></p>
</div>
<div data-if="python" style="display:none;">
<p>
<code>def <b>get_contour_attrib_xld</b>(<a href="#Contour"><i>contour</i></a>: HObject, <a href="#Name"><i>name</i></a>: str) -&gt; Sequence[float]</code></p>
</div>
<h2 id="sec_description">描述</h2>
<p><code><span data-if="hdevelop" style="display:inline">get_contour_attrib_xld</span><span data-if="c" style="display:none">get_contour_attrib_xld</span><span data-if="cpp" style="display:none">GetContourAttribXld</span><span data-if="com" style="display:none">GetContourAttribXld</span><span data-if="dotnet" style="display:none">GetContourAttribXld</span><span data-if="python" style="display:none">get_contour_attrib_xld</span></code> 返回值s of the
attribute <a href="#Name"><i><code><span data-if="hdevelop" style="display:inline">Name</span><span data-if="c" style="display:none">Name</span><span data-if="cpp" style="display:none">Name</span><span data-if="com" style="display:none">Name</span><span data-if="dotnet" style="display:none">name</span><span data-if="python" style="display:none">name</span></code></i></a> of the XLD contour <a href="#Contour"><i><code><span data-if="hdevelop" style="display:inline">Contour</span><span data-if="c" style="display:none">Contour</span><span data-if="cpp" style="display:none">Contour</span><span data-if="com" style="display:none">Contour</span><span data-if="dotnet" style="display:none">contour</span><span data-if="python" style="display:none">contour</span></code></i></a> in
<a href="#Attrib"><i><code><span data-if="hdevelop" style="display:inline">Attrib</span><span data-if="c" style="display:none">Attrib</span><span data-if="cpp" style="display:none">Attrib</span><span data-if="com" style="display:none">Attrib</span><span data-if="dotnet" style="display:none">attrib</span><span data-if="python" style="display:none">attrib</span></code></i></a>. Contour point attributes are additional values defined for
each contour point and describe local features.
<a href="query_contour_attribs_xld.html"><code><span data-if="hdevelop" style="display:inline">query_contour_attribs_xld</span><span data-if="c" style="display:none">query_contour_attribs_xld</span><span data-if="cpp" style="display:none">QueryContourAttribsXld</span><span data-if="com" style="display:none">QueryContourAttribsXld</span><span data-if="dotnet" style="display:none">QueryContourAttribsXld</span><span data-if="python" style="display:none">query_contour_attribs_xld</span></code></a> can be used to query which
attributes are set for a particular contour.
</p>
<p>The following list contains information about the different contour point
attributes and 该算子s that add them to XLD contours (for exceptions
see the respective operator references):
</p>
<dl class="generic">


<dt><b><i><span data-if="hdevelop" style="display:inline">'angle'</span><span data-if="c" style="display:none">"angle"</span><span data-if="cpp" style="display:none">"angle"</span><span data-if="com" style="display:none">"angle"</span><span data-if="dotnet" style="display:none">"angle"</span><span data-if="python" style="display:none">"angle"</span></i></b></dt>
<dd>
<p>
 
The direction of the normal vectors of the contour is
described by <i><span data-if="hdevelop" style="display:inline">'angle'</span><span data-if="c" style="display:none">"angle"</span><span data-if="cpp" style="display:none">"angle"</span><span data-if="com" style="display:none">"angle"</span><span data-if="dotnet" style="display:none">"angle"</span><span data-if="python" style="display:none">"angle"</span></i> [rad] (see image below).
It is oriented such that the normal vectors point to the right
side of the contour as the contour is traversed from start to end point
(the angles are defined counterclockwise with respect to the row
axis of the image).
</p>
<p>The attribute <i><span data-if="hdevelop" style="display:inline">'angle'</span><span data-if="c" style="display:none">"angle"</span><span data-if="cpp" style="display:none">"angle"</span><span data-if="com" style="display:none">"angle"</span><span data-if="dotnet" style="display:none">"angle"</span><span data-if="python" style="display:none">"angle"</span></i> is added by the following
operators: </p>
<p>
<a href="edges_color_sub_pix.html"><code><span data-if="hdevelop" style="display:inline">edges_color_sub_pix</span><span data-if="c" style="display:none">edges_color_sub_pix</span><span data-if="cpp" style="display:none">EdgesColorSubPix</span><span data-if="com" style="display:none">EdgesColorSubPix</span><span data-if="dotnet" style="display:none">EdgesColorSubPix</span><span data-if="python" style="display:none">edges_color_sub_pix</span></code></a>, <a href="edges_sub_pix.html"><code><span data-if="hdevelop" style="display:inline">edges_sub_pix</span><span data-if="c" style="display:none">edges_sub_pix</span><span data-if="cpp" style="display:none">EdgesSubPix</span><span data-if="com" style="display:none">EdgesSubPix</span><span data-if="dotnet" style="display:none">EdgesSubPix</span><span data-if="python" style="display:none">edges_sub_pix</span></code></a>,
<a href="lines_color.html"><code><span data-if="hdevelop" style="display:inline">lines_color</span><span data-if="c" style="display:none">lines_color</span><span data-if="cpp" style="display:none">LinesColor</span><span data-if="com" style="display:none">LinesColor</span><span data-if="dotnet" style="display:none">LinesColor</span><span data-if="python" style="display:none">lines_color</span></code></a>, <a href="lines_facet.html"><code><span data-if="hdevelop" style="display:inline">lines_facet</span><span data-if="c" style="display:none">lines_facet</span><span data-if="cpp" style="display:none">LinesFacet</span><span data-if="com" style="display:none">LinesFacet</span><span data-if="dotnet" style="display:none">LinesFacet</span><span data-if="python" style="display:none">lines_facet</span></code></a>, <a href="lines_gauss.html"><code><span data-if="hdevelop" style="display:inline">lines_gauss</span><span data-if="c" style="display:none">lines_gauss</span><span data-if="cpp" style="display:none">LinesGauss</span><span data-if="com" style="display:none">LinesGauss</span><span data-if="dotnet" style="display:none">LinesGauss</span><span data-if="python" style="display:none">lines_gauss</span></code></a>
</p>
</dd>

<dt><b><i><span data-if="hdevelop" style="display:inline">'response'</span><span data-if="c" style="display:none">"response"</span><span data-if="cpp" style="display:none">"response"</span><span data-if="com" style="display:none">"response"</span><span data-if="dotnet" style="display:none">"response"</span><span data-if="python" style="display:none">"response"</span></i></b></dt>
<dd>
<p>

<i><span data-if="hdevelop" style="display:inline">'response'</span><span data-if="c" style="display:none">"response"</span><span data-if="cpp" style="display:none">"response"</span><span data-if="com" style="display:none">"response"</span><span data-if="dotnet" style="display:none">"response"</span><span data-if="python" style="display:none">"response"</span></i> contains the magnitude of the edge gradient
(see image below).
</p>
<p>The attribute <i><span data-if="hdevelop" style="display:inline">'response'</span><span data-if="c" style="display:none">"response"</span><span data-if="cpp" style="display:none">"response"</span><span data-if="com" style="display:none">"response"</span><span data-if="dotnet" style="display:none">"response"</span><span data-if="python" style="display:none">"response"</span></i> is added by the following
operators: </p>
<p>
<a href="edges_color_sub_pix.html"><code><span data-if="hdevelop" style="display:inline">edges_color_sub_pix</span><span data-if="c" style="display:none">edges_color_sub_pix</span><span data-if="cpp" style="display:none">EdgesColorSubPix</span><span data-if="com" style="display:none">EdgesColorSubPix</span><span data-if="dotnet" style="display:none">EdgesColorSubPix</span><span data-if="python" style="display:none">edges_color_sub_pix</span></code></a>, <a href="edges_sub_pix.html"><code><span data-if="hdevelop" style="display:inline">edges_sub_pix</span><span data-if="c" style="display:none">edges_sub_pix</span><span data-if="cpp" style="display:none">EdgesSubPix</span><span data-if="com" style="display:none">EdgesSubPix</span><span data-if="dotnet" style="display:none">EdgesSubPix</span><span data-if="python" style="display:none">edges_sub_pix</span></code></a>,
<a href="lines_color.html"><code><span data-if="hdevelop" style="display:inline">lines_color</span><span data-if="c" style="display:none">lines_color</span><span data-if="cpp" style="display:none">LinesColor</span><span data-if="com" style="display:none">LinesColor</span><span data-if="dotnet" style="display:none">LinesColor</span><span data-if="python" style="display:none">lines_color</span></code></a>, <a href="lines_facet.html"><code><span data-if="hdevelop" style="display:inline">lines_facet</span><span data-if="c" style="display:none">lines_facet</span><span data-if="cpp" style="display:none">LinesFacet</span><span data-if="com" style="display:none">LinesFacet</span><span data-if="dotnet" style="display:none">LinesFacet</span><span data-if="python" style="display:none">lines_facet</span></code></a>, <a href="lines_gauss.html"><code><span data-if="hdevelop" style="display:inline">lines_gauss</span><span data-if="c" style="display:none">lines_gauss</span><span data-if="cpp" style="display:none">LinesGauss</span><span data-if="com" style="display:none">LinesGauss</span><span data-if="dotnet" style="display:none">LinesGauss</span><span data-if="python" style="display:none">lines_gauss</span></code></a>
</p>
</dd>

<dt><b><i><span data-if="hdevelop" style="display:inline">'width_right'</span><span data-if="c" style="display:none">"width_right"</span><span data-if="cpp" style="display:none">"width_right"</span><span data-if="com" style="display:none">"width_right"</span><span data-if="dotnet" style="display:none">"width_right"</span><span data-if="python" style="display:none">"width_right"</span></i></b></dt>
<dd>
<p>

The line width to the right of the line (as the contour is
traversed from start to end point) is described by
<i><span data-if="hdevelop" style="display:inline">'width_right'</span><span data-if="c" style="display:none">"width_right"</span><span data-if="cpp" style="display:none">"width_right"</span><span data-if="com" style="display:none">"width_right"</span><span data-if="dotnet" style="display:none">"width_right"</span><span data-if="python" style="display:none">"width_right"</span></i> [px] (see image below).
</p>
<p>The attribute <i><span data-if="hdevelop" style="display:inline">'width_right'</span><span data-if="c" style="display:none">"width_right"</span><span data-if="cpp" style="display:none">"width_right"</span><span data-if="com" style="display:none">"width_right"</span><span data-if="dotnet" style="display:none">"width_right"</span><span data-if="python" style="display:none">"width_right"</span></i> is added by the following
operators: </p>
<p>
<a href="lines_color.html"><code><span data-if="hdevelop" style="display:inline">lines_color</span><span data-if="c" style="display:none">lines_color</span><span data-if="cpp" style="display:none">LinesColor</span><span data-if="com" style="display:none">LinesColor</span><span data-if="dotnet" style="display:none">LinesColor</span><span data-if="python" style="display:none">lines_color</span></code></a>, <a href="lines_gauss.html"><code><span data-if="hdevelop" style="display:inline">lines_gauss</span><span data-if="c" style="display:none">lines_gauss</span><span data-if="cpp" style="display:none">LinesGauss</span><span data-if="com" style="display:none">LinesGauss</span><span data-if="dotnet" style="display:none">LinesGauss</span><span data-if="python" style="display:none">lines_gauss</span></code></a>
</p>
</dd>

<dt><b><i><span data-if="hdevelop" style="display:inline">'width_left'</span><span data-if="c" style="display:none">"width_left"</span><span data-if="cpp" style="display:none">"width_left"</span><span data-if="com" style="display:none">"width_left"</span><span data-if="dotnet" style="display:none">"width_left"</span><span data-if="python" style="display:none">"width_left"</span></i></b></dt>
<dd>
<p>

The line width to the left of the line (as the contour is
traversed from start to end point) is described by
<i><span data-if="hdevelop" style="display:inline">'width_left'</span><span data-if="c" style="display:none">"width_left"</span><span data-if="cpp" style="display:none">"width_left"</span><span data-if="com" style="display:none">"width_left"</span><span data-if="dotnet" style="display:none">"width_left"</span><span data-if="python" style="display:none">"width_left"</span></i> [px] (see image below).
</p>
<p>The attribute <i><span data-if="hdevelop" style="display:inline">'width_left'</span><span data-if="c" style="display:none">"width_left"</span><span data-if="cpp" style="display:none">"width_left"</span><span data-if="com" style="display:none">"width_left"</span><span data-if="dotnet" style="display:none">"width_left"</span><span data-if="python" style="display:none">"width_left"</span></i> is added by the following
operators: </p>
<p>
<a href="lines_color.html"><code><span data-if="hdevelop" style="display:inline">lines_color</span><span data-if="c" style="display:none">lines_color</span><span data-if="cpp" style="display:none">LinesColor</span><span data-if="com" style="display:none">LinesColor</span><span data-if="dotnet" style="display:none">LinesColor</span><span data-if="python" style="display:none">lines_color</span></code></a>, <a href="lines_gauss.html"><code><span data-if="hdevelop" style="display:inline">lines_gauss</span><span data-if="c" style="display:none">lines_gauss</span><span data-if="cpp" style="display:none">LinesGauss</span><span data-if="com" style="display:none">LinesGauss</span><span data-if="dotnet" style="display:none">LinesGauss</span><span data-if="python" style="display:none">lines_gauss</span></code></a>
</p>
<div style="text-align:center;" class="figure">
<table style="margin-left:auto;margin-right:auto">
<tr>
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</g>
</svg></td>
</tr>
<tr>
<td align="center">
        (
      1)
    </td>
<td align="center">
        (
      2)
    </td>
<td align="center">
        (
      3)
    </td>
</tr>
</table>
<div style="margin-bottom:30px;text-align:center;" class="caption">
Visualization of different point attributes of a contour
(red). The starting point of the contour is marked with a
white cross.
(1) Vectors (yellow), plotted at <i><span data-if="hdevelop" style="display:inline">'angle'</span><span data-if="c" style="display:none">"angle"</span><span data-if="cpp" style="display:none">"angle"</span><span data-if="com" style="display:none">"angle"</span><span data-if="dotnet" style="display:none">"angle"</span><span data-if="python" style="display:none">"angle"</span></i> (with respect
to the row axis), representing the normal for every point
of the contour,
(2) behavior of the attribute <i><span data-if="hdevelop" style="display:inline">'response'</span><span data-if="c" style="display:none">"response"</span><span data-if="cpp" style="display:none">"response"</span><span data-if="com" style="display:none">"response"</span><span data-if="dotnet" style="display:none">"response"</span><span data-if="python" style="display:none">"response"</span></i> along a
contour, and
(3) visualization of the calculated attributes
<i><span data-if="hdevelop" style="display:inline">'width_right'</span><span data-if="c" style="display:none">"width_right"</span><span data-if="cpp" style="display:none">"width_right"</span><span data-if="com" style="display:none">"width_right"</span><span data-if="dotnet" style="display:none">"width_right"</span><span data-if="python" style="display:none">"width_right"</span></i> (yellow) and <i><span data-if="hdevelop" style="display:inline">'width_left'</span><span data-if="c" style="display:none">"width_left"</span><span data-if="cpp" style="display:none">"width_left"</span><span data-if="com" style="display:none">"width_left"</span><span data-if="dotnet" style="display:none">"width_left"</span><span data-if="python" style="display:none">"width_left"</span></i>
(green).
</div>
</div>

</dd>

<dt><b><i><span data-if="hdevelop" style="display:inline">'edge_direction'</span><span data-if="c" style="display:none">"edge_direction"</span><span data-if="cpp" style="display:none">"edge_direction"</span><span data-if="com" style="display:none">"edge_direction"</span><span data-if="dotnet" style="display:none">"edge_direction"</span><span data-if="python" style="display:none">"edge_direction"</span></i></b></dt>
<dd>
<p>

Gives the direction of the edge (not of the XLD contour), calculated
from image gradients in direction of rows and columns.
The angles are given with respect to the column axis of the image.
</p>
<p>The attribute <i><span data-if="hdevelop" style="display:inline">'edge_direction'</span><span data-if="c" style="display:none">"edge_direction"</span><span data-if="cpp" style="display:none">"edge_direction"</span><span data-if="com" style="display:none">"edge_direction"</span><span data-if="dotnet" style="display:none">"edge_direction"</span><span data-if="python" style="display:none">"edge_direction"</span></i> [rad] is added by the following
operators: </p>
<p>
<a href="edges_color_sub_pix.html"><code><span data-if="hdevelop" style="display:inline">edges_color_sub_pix</span><span data-if="c" style="display:none">edges_color_sub_pix</span><span data-if="cpp" style="display:none">EdgesColorSubPix</span><span data-if="com" style="display:none">EdgesColorSubPix</span><span data-if="dotnet" style="display:none">EdgesColorSubPix</span><span data-if="python" style="display:none">edges_color_sub_pix</span></code></a>, <a href="edges_sub_pix.html"><code><span data-if="hdevelop" style="display:inline">edges_sub_pix</span><span data-if="c" style="display:none">edges_sub_pix</span><span data-if="cpp" style="display:none">EdgesSubPix</span><span data-if="com" style="display:none">EdgesSubPix</span><span data-if="dotnet" style="display:none">EdgesSubPix</span><span data-if="python" style="display:none">edges_sub_pix</span></code></a>
</p>
<div style="text-align:center;" class="figure">
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DGBjYwCHjBp1AIsWPandAOZwdPSZH9vRkYqamsknwnYkho+HAwPY2BjABscANjYGcH/yTuyJEz/E +PHrRVXs1VahKi+fgw8+uEO9InIwgI0t2gI4cpaEIaKz0taWgdLS6/Dcc7/Au+9+TYTvXFEV93/4 PBGNLAYwUdQw4fjxCaLy/SrefPObqo+IwoUBTBSFImk9ZCKj4ruQiIgoDBjAREREYcAAJiIiCgMG MBERURgwgImIiMKAAUxERBQGDGAiIqIwYAATERGFAQOYiIgoDBjAREREYcAAJiIiCgMGMBERURgw gImIiMKAAUxERBQGDGAiIqIwYAATERGFAQOYiIgoDBjAREREYcAAJiIiGnHA/wdJ92DBsOlX0QAA AABJRU5ErkJggg== " preserveAspectRatio="none" x="0" y="0" width="100%" height="100%"></image>
</g>
</svg><div style="margin-bottom:30px;text-align:center;" class="caption">
Vectors plotted in <i><span data-if="hdevelop" style="display:inline">'edge_direction'</span><span data-if="c" style="display:none">"edge_direction"</span><span data-if="cpp" style="display:none">"edge_direction"</span><span data-if="com" style="display:none">"edge_direction"</span><span data-if="dotnet" style="display:none">"edge_direction"</span><span data-if="python" style="display:none">"edge_direction"</span></i> (yellow) for every
point of a contour (red).
</div>
</div>

</dd>

<dt><b><i><span data-if="hdevelop" style="display:inline">'asymmetry'</span><span data-if="c" style="display:none">"asymmetry"</span><span data-if="cpp" style="display:none">"asymmetry"</span><span data-if="com" style="display:none">"asymmetry"</span><span data-if="dotnet" style="display:none">"asymmetry"</span><span data-if="python" style="display:none">"asymmetry"</span></i></b></dt>
<dd>
<p>

The contour attribute <i><span data-if="hdevelop" style="display:inline">'asymmetry'</span><span data-if="c" style="display:none">"asymmetry"</span><span data-if="cpp" style="display:none">"asymmetry"</span><span data-if="com" style="display:none">"asymmetry"</span><span data-if="dotnet" style="display:none">"asymmetry"</span><span data-if="python" style="display:none">"asymmetry"</span></i> describes the image gradient
on both sides of the edge. It is positive if the asymmetric part, i.e.,
the part with the weaker gradient, is on the right side of the line,
while it is negative if the asymmetric part is on the left side of
the line (see image below).
</p>
<p>The attribute <i><span data-if="hdevelop" style="display:inline">'asymmetry'</span><span data-if="c" style="display:none">"asymmetry"</span><span data-if="cpp" style="display:none">"asymmetry"</span><span data-if="com" style="display:none">"asymmetry"</span><span data-if="dotnet" style="display:none">"asymmetry"</span><span data-if="python" style="display:none">"asymmetry"</span></i> is added by the following operator:
</p>
<p>
<a href="lines_gauss.html"><code><span data-if="hdevelop" style="display:inline">lines_gauss</span><span data-if="c" style="display:none">lines_gauss</span><span data-if="cpp" style="display:none">LinesGauss</span><span data-if="com" style="display:none">LinesGauss</span><span data-if="dotnet" style="display:none">LinesGauss</span><span data-if="python" style="display:none">lines_gauss</span></code></a>
</p>
</dd>

<dt><b><i><span data-if="hdevelop" style="display:inline">'contrast'</span><span data-if="c" style="display:none">"contrast"</span><span data-if="cpp" style="display:none">"contrast"</span><span data-if="com" style="display:none">"contrast"</span><span data-if="dotnet" style="display:none">"contrast"</span><span data-if="python" style="display:none">"contrast"</span></i></b></dt>
<dd>
<p>

The contrast of a contour describes the difference between the gray
values of the line and the gray values of the local background.
It is positive if bright lines are extracted, while it is negative for
dark lines (see image below).
</p>
<p>The attribute <i><span data-if="hdevelop" style="display:inline">'contrast'</span><span data-if="c" style="display:none">"contrast"</span><span data-if="cpp" style="display:none">"contrast"</span><span data-if="com" style="display:none">"contrast"</span><span data-if="dotnet" style="display:none">"contrast"</span><span data-if="python" style="display:none">"contrast"</span></i> is added by the following operator:
</p>
<p>
<a href="lines_gauss.html"><code><span data-if="hdevelop" style="display:inline">lines_gauss</span><span data-if="c" style="display:none">lines_gauss</span><span data-if="cpp" style="display:none">LinesGauss</span><span data-if="com" style="display:none">LinesGauss</span><span data-if="dotnet" style="display:none">LinesGauss</span><span data-if="python" style="display:none">lines_gauss</span></code></a>
</p>
<div style="text-align:center;" class="figure">
<table style="margin-left:auto;margin-right:auto">
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</g>
</svg></td></tr>
<tr><td align="center">
        (
      2)
    </td></tr>
</table>
<div style="margin-bottom:30px;text-align:center;" class="caption">
behavior of the attributes (1) <i><span data-if="hdevelop" style="display:inline">'asymmetry'</span><span data-if="c" style="display:none">"asymmetry"</span><span data-if="cpp" style="display:none">"asymmetry"</span><span data-if="com" style="display:none">"asymmetry"</span><span data-if="dotnet" style="display:none">"asymmetry"</span><span data-if="python" style="display:none">"asymmetry"</span></i> and (2)
<i><span data-if="hdevelop" style="display:inline">'contrast'</span><span data-if="c" style="display:none">"contrast"</span><span data-if="cpp" style="display:none">"contrast"</span><span data-if="com" style="display:none">"contrast"</span><span data-if="dotnet" style="display:none">"contrast"</span><span data-if="python" style="display:none">"contrast"</span></i> for a contour along an image structure (the
starting point of the contour is marked with a white cross).
</div>
</div>

</dd>

<dt><b><i><span data-if="hdevelop" style="display:inline">'distance'</span><span data-if="c" style="display:none">"distance"</span><span data-if="cpp" style="display:none">"distance"</span><span data-if="com" style="display:none">"distance"</span><span data-if="dotnet" style="display:none">"distance"</span><span data-if="python" style="display:none">"distance"</span></i></b></dt>
<dd>
<p>

The minimum distance to any point or segment of the reference
contour (depending on the mode chosen for the calculation) is given
in the attribute <i><span data-if="hdevelop" style="display:inline">'distance'</span><span data-if="c" style="display:none">"distance"</span><span data-if="cpp" style="display:none">"distance"</span><span data-if="com" style="display:none">"distance"</span><span data-if="dotnet" style="display:none">"distance"</span><span data-if="python" style="display:none">"distance"</span></i> [px] for all points of a contour.
</p>
<p>The attribute <i><span data-if="hdevelop" style="display:inline">'distance'</span><span data-if="c" style="display:none">"distance"</span><span data-if="cpp" style="display:none">"distance"</span><span data-if="com" style="display:none">"distance"</span><span data-if="dotnet" style="display:none">"distance"</span><span data-if="python" style="display:none">"distance"</span></i> is added by the following
operators: </p>
<p>
<a href="apply_distance_transform_xld.html"><code><span data-if="hdevelop" style="display:inline">apply_distance_transform_xld</span><span data-if="c" style="display:none">apply_distance_transform_xld</span><span data-if="cpp" style="display:none">ApplyDistanceTransformXld</span><span data-if="com" style="display:none">ApplyDistanceTransformXld</span><span data-if="dotnet" style="display:none">ApplyDistanceTransformXld</span><span data-if="python" style="display:none">apply_distance_transform_xld</span></code></a>, <a href="distance_contours_xld.html"><code><span data-if="hdevelop" style="display:inline">distance_contours_xld</span><span data-if="c" style="display:none">distance_contours_xld</span><span data-if="cpp" style="display:none">DistanceContoursXld</span><span data-if="com" style="display:none">DistanceContoursXld</span><span data-if="dotnet" style="display:none">DistanceContoursXld</span><span data-if="python" style="display:none">distance_contours_xld</span></code></a>
</p>
<div style="text-align:center;" class="figure">
<table style="margin-left:auto;margin-right:auto">
<tr>
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</g>
</svg></td>
</tr>
<tr>
<td align="center">
        (
      1)
    </td>
<td align="center">
        (
      2)
    </td>
</tr>
</table>
<div style="margin-bottom:30px;text-align:center;" class="caption">
(1) <i><span data-if="hdevelop" style="display:inline">'distance'</span><span data-if="c" style="display:none">"distance"</span><span data-if="cpp" style="display:none">"distance"</span><span data-if="com" style="display:none">"distance"</span><span data-if="dotnet" style="display:none">"distance"</span><span data-if="python" style="display:none">"distance"</span></i> of a contour (red) to the
points of a reference contour (green) and
(2) <i><span data-if="hdevelop" style="display:inline">'distance'</span><span data-if="c" style="display:none">"distance"</span><span data-if="cpp" style="display:none">"distance"</span><span data-if="com" style="display:none">"distance"</span><span data-if="dotnet" style="display:none">"distance"</span><span data-if="python" style="display:none">"distance"</span></i> to any segment of a reference contour
(green).
</div>
</div>

</dd>
</dl>
<p>For information about global contour attributes see 该算子 reference
of <a href="get_contour_global_attrib_xld.html"><code><span data-if="hdevelop" style="display:inline">get_contour_global_attrib_xld</span><span data-if="c" style="display:none">get_contour_global_attrib_xld</span><span data-if="cpp" style="display:none">GetContourGlobalAttribXld</span><span data-if="com" style="display:none">GetContourGlobalAttribXld</span><span data-if="dotnet" style="display:none">GetContourGlobalAttribXld</span><span data-if="python" style="display:none">get_contour_global_attrib_xld</span></code></a>.
</p>
<h2 id="sec_execution">运行信息</h2>
<ul>
  <li>多线程类型:可重入(与非独占操作符并行运行)。</li>
<li>多线程作用域:全局(可以从任何线程调用)。</li>
  <li>未经并行化处理。</li>
</ul>
<h2 id="sec_parameters">参数表</h2>
  <div class="par">
<div class="parhead">
<span id="Contour" class="parname"><b><code><span data-if="hdevelop" style="display:inline">Contour</span><span data-if="c" style="display:none">Contour</span><span data-if="cpp" style="display:none">Contour</span><span data-if="com" style="display:none">Contour</span><span data-if="dotnet" style="display:none">contour</span><span data-if="python" style="display:none">contour</span></code></b> (input_object)  </span><span>xld_cont <code>→</code> <span data-if="hdevelop" style="display:inline">object</span><span data-if="dotnet" style="display:none"><a href="HXLDCont.html">HXLDCont</a></span><span data-if="python" style="display:none">HObject</span><span data-if="cpp" style="display:none"><a href="HXLDCont.html">HXLDCont</a></span><span data-if="c" style="display:none">Hobject</span></span>
</div>
<p class="pardesc">Input XLD contour.</p>
</div>
  <div class="par">
<div class="parhead">
<span id="Name" class="parname"><b><code><span data-if="hdevelop" style="display:inline">Name</span><span data-if="c" style="display:none">Name</span><span data-if="cpp" style="display:none">Name</span><span data-if="com" style="display:none">Name</span><span data-if="dotnet" style="display:none">name</span><span data-if="python" style="display:none">name</span></code></b> (input_control)  </span><span>string <code>→</code> <span data-if="dotnet" style="display:none"><a href="HTuple.html">HTuple</a></span><span data-if="python" style="display:none">str</span><span data-if="cpp" style="display:none"><a href="HTuple.html">HTuple</a></span><span data-if="c" style="display:none">Htuple</span><span data-if="hdevelop" style="display:inline"> (string)</span><span data-if="dotnet" style="display:none"> (<i>string</i>)</span><span data-if="cpp" style="display:none"> (<i>HString</i>)</span><span data-if="c" style="display:none"> (<i>char*</i>)</span></span>
</div>
<p class="pardesc">Name of the attribute.</p>
<p class="pardesc"><span class="parcat">Default:
      </span>
    <span data-if="hdevelop" style="display:inline">'angle'</span>
    <span data-if="c" style="display:none">"angle"</span>
    <span data-if="cpp" style="display:none">"angle"</span>
    <span data-if="com" style="display:none">"angle"</span>
    <span data-if="dotnet" style="display:none">"angle"</span>
    <span data-if="python" style="display:none">"angle"</span>
</p>
<p class="pardesc"><span class="parcat">Suggested values:
      </span><span data-if="hdevelop" style="display:inline">'angle'</span><span data-if="c" style="display:none">"angle"</span><span data-if="cpp" style="display:none">"angle"</span><span data-if="com" style="display:none">"angle"</span><span data-if="dotnet" style="display:none">"angle"</span><span data-if="python" style="display:none">"angle"</span>, <span data-if="hdevelop" style="display:inline">'edge_direction'</span><span data-if="c" style="display:none">"edge_direction"</span><span data-if="cpp" style="display:none">"edge_direction"</span><span data-if="com" style="display:none">"edge_direction"</span><span data-if="dotnet" style="display:none">"edge_direction"</span><span data-if="python" style="display:none">"edge_direction"</span>, <span data-if="hdevelop" style="display:inline">'width_right'</span><span data-if="c" style="display:none">"width_right"</span><span data-if="cpp" style="display:none">"width_right"</span><span data-if="com" style="display:none">"width_right"</span><span data-if="dotnet" style="display:none">"width_right"</span><span data-if="python" style="display:none">"width_right"</span>, <span data-if="hdevelop" style="display:inline">'width_left'</span><span data-if="c" style="display:none">"width_left"</span><span data-if="cpp" style="display:none">"width_left"</span><span data-if="com" style="display:none">"width_left"</span><span data-if="dotnet" style="display:none">"width_left"</span><span data-if="python" style="display:none">"width_left"</span>, <span data-if="hdevelop" style="display:inline">'response'</span><span data-if="c" style="display:none">"response"</span><span data-if="cpp" style="display:none">"response"</span><span data-if="com" style="display:none">"response"</span><span data-if="dotnet" style="display:none">"response"</span><span data-if="python" style="display:none">"response"</span>, <span data-if="hdevelop" style="display:inline">'contrast'</span><span data-if="c" style="display:none">"contrast"</span><span data-if="cpp" style="display:none">"contrast"</span><span data-if="com" style="display:none">"contrast"</span><span data-if="dotnet" style="display:none">"contrast"</span><span data-if="python" style="display:none">"contrast"</span>, <span data-if="hdevelop" style="display:inline">'asymmetry'</span><span data-if="c" style="display:none">"asymmetry"</span><span data-if="cpp" style="display:none">"asymmetry"</span><span data-if="com" style="display:none">"asymmetry"</span><span data-if="dotnet" style="display:none">"asymmetry"</span><span data-if="python" style="display:none">"asymmetry"</span>, <span data-if="hdevelop" style="display:inline">'distance'</span><span data-if="c" style="display:none">"distance"</span><span data-if="cpp" style="display:none">"distance"</span><span data-if="com" style="display:none">"distance"</span><span data-if="dotnet" style="display:none">"distance"</span><span data-if="python" style="display:none">"distance"</span></p>
</div>
  <div class="par">
<div class="parhead">
<span id="Attrib" class="parname"><b><code><span data-if="hdevelop" style="display:inline">Attrib</span><span data-if="c" style="display:none">Attrib</span><span data-if="cpp" style="display:none">Attrib</span><span data-if="com" style="display:none">Attrib</span><span data-if="dotnet" style="display:none">attrib</span><span data-if="python" style="display:none">attrib</span></code></b> (output_control)  </span><span>real-array <code>→</code> <span data-if="dotnet" style="display:none"><a href="HTuple.html">HTuple</a></span><span data-if="python" style="display:none">Sequence[float]</span><span data-if="cpp" style="display:none"><a href="HTuple.html">HTuple</a></span><span data-if="c" style="display:none">Htuple</span><span data-if="hdevelop" style="display:inline"> (real)</span><span data-if="dotnet" style="display:none"> (<i>double</i>)</span><span data-if="cpp" style="display:none"> (<i>double</i>)</span><span data-if="c" style="display:none"> (<i>double</i>)</span></span>
</div>
<p class="pardesc">Attribute values.</p>
</div>
<h2 id="sec_predecessors">可能的前置算子</h2>
<p>
<code><a href="lines_gauss.html"><span data-if="hdevelop" style="display:inline">lines_gauss</span><span data-if="c" style="display:none">lines_gauss</span><span data-if="cpp" style="display:none">LinesGauss</span><span data-if="com" style="display:none">LinesGauss</span><span data-if="dotnet" style="display:none">LinesGauss</span><span data-if="python" style="display:none">lines_gauss</span></a></code>, 
<code><a href="lines_facet.html"><span data-if="hdevelop" style="display:inline">lines_facet</span><span data-if="c" style="display:none">lines_facet</span><span data-if="cpp" style="display:none">LinesFacet</span><span data-if="com" style="display:none">LinesFacet</span><span data-if="dotnet" style="display:none">LinesFacet</span><span data-if="python" style="display:none">lines_facet</span></a></code>, 
<code><a href="edges_sub_pix.html"><span data-if="hdevelop" style="display:inline">edges_sub_pix</span><span data-if="c" style="display:none">edges_sub_pix</span><span data-if="cpp" style="display:none">EdgesSubPix</span><span data-if="com" style="display:none">EdgesSubPix</span><span data-if="dotnet" style="display:none">EdgesSubPix</span><span data-if="python" style="display:none">edges_sub_pix</span></a></code>, 
<code><a href="distance_contours_xld.html"><span data-if="hdevelop" style="display:inline">distance_contours_xld</span><span data-if="c" style="display:none">distance_contours_xld</span><span data-if="cpp" style="display:none">DistanceContoursXld</span><span data-if="com" style="display:none">DistanceContoursXld</span><span data-if="dotnet" style="display:none">DistanceContoursXld</span><span data-if="python" style="display:none">distance_contours_xld</span></a></code>, 
<code><a href="apply_distance_transform_xld.html"><span data-if="hdevelop" style="display:inline">apply_distance_transform_xld</span><span data-if="c" style="display:none">apply_distance_transform_xld</span><span data-if="cpp" style="display:none">ApplyDistanceTransformXld</span><span data-if="com" style="display:none">ApplyDistanceTransformXld</span><span data-if="dotnet" style="display:none">ApplyDistanceTransformXld</span><span data-if="python" style="display:none">apply_distance_transform_xld</span></a></code>
</p>
<h2 id="sec_see">参考其它</h2>
<p>
<code><a href="query_contour_attribs_xld.html"><span data-if="hdevelop" style="display:inline">query_contour_attribs_xld</span><span data-if="c" style="display:none">query_contour_attribs_xld</span><span data-if="cpp" style="display:none">QueryContourAttribsXld</span><span data-if="com" style="display:none">QueryContourAttribsXld</span><span data-if="dotnet" style="display:none">QueryContourAttribsXld</span><span data-if="python" style="display:none">query_contour_attribs_xld</span></a></code>, 
<code><a href="get_contour_global_attrib_xld.html"><span data-if="hdevelop" style="display:inline">get_contour_global_attrib_xld</span><span data-if="c" style="display:none">get_contour_global_attrib_xld</span><span data-if="cpp" style="display:none">GetContourGlobalAttribXld</span><span data-if="com" style="display:none">GetContourGlobalAttribXld</span><span data-if="dotnet" style="display:none">GetContourGlobalAttribXld</span><span data-if="python" style="display:none">get_contour_global_attrib_xld</span></a></code>, 
<code><a href="query_contour_global_attribs_xld.html"><span data-if="hdevelop" style="display:inline">query_contour_global_attribs_xld</span><span data-if="c" style="display:none">query_contour_global_attribs_xld</span><span data-if="cpp" style="display:none">QueryContourGlobalAttribsXld</span><span data-if="com" style="display:none">QueryContourGlobalAttribsXld</span><span data-if="dotnet" style="display:none">QueryContourGlobalAttribsXld</span><span data-if="python" style="display:none">query_contour_global_attribs_xld</span></a></code>
</p>
<h2 id="sec_module">模块</h2>
<p>
Foundation</p>
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